| Overall Statistics |
|
Total Trades 5 Average Win 8.58% Average Loss 0% Compounding Annual Return 31.701% Drawdown 21.600% Expectancy 0 Net Profit 38.216% Sharpe Ratio 1.25 Probabilistic Sharpe Ratio 54.638% Loss Rate 0% Win Rate 100% Profit-Loss Ratio 0 Alpha 0.302 Beta -0.069 Annual Standard Deviation 0.232 Annual Variance 0.054 Information Ratio 0.288 Tracking Error 0.383 Treynor Ratio -4.194 Total Fees $5.00 Estimated Strategy Capacity $13000000.00 Lowest Capacity Asset QQQ RIWIV7K5Z9LX |
import numpy as np
# ------------------------------------------------------------------
STK = ['QQQ']; BND = ['TLT']; VOLA = 126; BASE_RET = 85; LEV = 1.00;
PAIRS = ['SLV', 'GLD', 'XLI', 'XLU', 'DBB', 'UUP']
# ------------------------------------------------------------------
class DualMomentumInOut(QCAlgorithm):
def Initialize(self):
self.SetStartDate(2020, 1, 1)
self.SetEndDate(2021, 3, 4)
self.cap = 10000
self.SetCash(self.cap)
self.STK = self.AddEquity('QQQ', Resolution.Minute).Symbol
self.BND = self.AddEquity('TLT', Resolution.Minute).Symbol
self.ASSETS = [self.STK, self.BND]
self.SLV = self.AddEquity('SLV', Resolution.Daily).Symbol
self.GLD = self.AddEquity('GLD', Resolution.Daily).Symbol
self.XLI = self.AddEquity('XLI', Resolution.Daily).Symbol
self.XLU = self.AddEquity('XLU', Resolution.Daily).Symbol
self.DBB = self.AddEquity('DBB', Resolution.Daily).Symbol
self.UUP = self.AddEquity('UUP', Resolution.Daily).Symbol
self.MKT = self.AddEquity('SPY', Resolution.Daily).Symbol
self.pairs = [self.SLV, self.GLD, self.XLI, self.XLU, self.DBB, self.UUP]
self.bull = 1
self.count = 0
self.outday = 0
self.wt = {}
self.real_wt = {}
self.mkt = []
self.SetWarmUp(timedelta(350))
self.Schedule.On(self.DateRules.EveryDay(), self.TimeRules.AfterMarketOpen('SPY', 100),
self.daily_check)
symbols = [self.MKT] + self.pairs
for symbol in symbols:
self.consolidator = TradeBarConsolidator(timedelta(days=1))
self.consolidator.DataConsolidated += self.consolidation_handler
self.SubscriptionManager.AddConsolidator(symbol, self.consolidator)
self.history = self.History(symbols, VOLA + 1, Resolution.Daily)
if self.history.empty or 'close' not in self.history.columns:
return
self.history = self.history['close'].unstack(level=0).dropna()
def consolidation_handler(self, sender, consolidated):
self.history.loc[consolidated.EndTime, consolidated.Symbol] = consolidated.Close
self.history = self.history.iloc[-(VOLA + 1):]
def daily_check(self):
vola = self.history[[self.MKT]].pct_change().std() * np.sqrt(252)
wait_days = int(vola * BASE_RET)
period = int((1.0 - vola) * BASE_RET)
r = self.history.pct_change(period).iloc[-1]
exit = ((r[self.SLV] < r[self.GLD]) and (r[self.XLI] < r[self.XLU]) and (r[self.DBB] < r[self.UUP]))
if exit:
self.bull = False
self.outday = self.count
if self.count >= self.outday + wait_days:
self.bull = True
self.count += 1
if not self.bull:
for sec in self.ASSETS:
self.wt[sec] = LEV if sec is self.BND else 0
self.trade()
elif self.bull:
for sec in self.ASSETS:
self.wt[sec] = LEV if sec is self.STK else 0
self.trade()
def trade(self):
for sec, weight in self.wt.items():
if weight == 0 and self.Portfolio[sec].IsLong:
self.Liquidate(sec)
cond1 = weight == 0 and self.Portfolio[sec].IsLong
cond2 = weight > 0 and not self.Portfolio[sec].Invested
if cond1 or cond2:
self.SetHoldings(sec, weight)
def OnEndOfDay(self):
mkt_price = self.Securities[self.MKT].Close
self.mkt.append(mkt_price)
mkt_perf = self.mkt[-1] / self.mkt[0] * self.cap
self.Plot('Strategy Equity', 'SPY', mkt_perf)
account_leverage = self.Portfolio.TotalHoldingsValue / self.Portfolio.TotalPortfolioValue
self.Plot('Holdings', 'leverage', round(account_leverage, 1))
for sec, weight in self.wt.items():
self.real_wt[sec] = round(self.ActiveSecurities[sec].Holdings.Quantity * self.Securities[sec].Price / self.Portfolio.TotalPortfolioValue,4)
self.Plot('Holdings', self.Securities[sec].Symbol, round(self.real_wt[sec], 3))